Credit Card Fraud Detection
My Role
Machine Learning Engineer – Security & Risk Analytics
- Synthetic Data Engineering: Simulating realistic financial datasets with 5% fraud distribution
- Feature Risk Scoring: Developing "Location Risk" and "Device Risk" variables
- Statistical Distribution Analysis: Histograms for normal vs fraudulent transaction patterns
- Model Training & Optimization: Implementing Logistic Regression for fraud classification
- Performance Validation: Engineering visual Confusion Matrix for false positive/negative analysis
Project Highlights
- Cybersecurity Focus: Demonstrates AI application for sensitive data protection
- Feature Engineering: Proves context (device & location) improves predictive power
- High-Precision Evaluation: Focus on accuracy while minimizing false positives
- Clean Code Standards: Uses seeded random generation for scientific reproducibility
- Real-World Simulation: Addresses imbalanced data challenges in fraud detection